I. Pairwise-combinations
One way would be with numba
to gain memory and hence performance efficiency -
from numba import njit
@njit
def pairwise_combs_numba(a):
n = len(a)
L = n*(n-1)//2
out = np.empty((L,2),dtype=a.dtype)
iterID = 0
for i in range(n):
for j in range(i+1,n):
out[iterID,0] = a[i]
out[iterID,1] = a[j]
iterID += 1
return out
Another NumPy based one would be using np.broadcast_to
to get meshgrid views and then masking -
def pairwise_combs_mask(a):
n = len(a)
L = n*(n-1)//2
out = np.empty((L,2),dtype=a.dtype)
m = ~np.tri(len(a),dtype=bool)
out[:,0] = np.broadcast_to(a[:,None],(n,n))[m]
out[:,1] = np.broadcast_to(a,(n,n))[m]
return out
II. Triplet-combinations
We will extend the same methodology to get ourselves triplet-combinations -
@njit
def triplet_combs_numba(a):
n = len(a)
L = n*(n-1)*(n-2)//6
out = np.empty((L,3),dtype=a.dtype)
iterID = 0
for i in range(n):
for j in range(i+1,n):
for k in range(j+1,n):
out[iterID,0] = a[i]
out[iterID,1] = a[j]
out[iterID,2] = a[k]
iterID += 1
return out
def triplet_combs_mask(a):
n = len(a)
L = n*(n-1)*(n-2)//6
out = np.empty((L,3),dtype=a.dtype)
r = np.arange(n)
m = (r[:,None,None]<r[:,None]) & (r[:,None]<r)
out[:,0] = np.broadcast_to(a[:,None,None],(n,n,n))[m]
out[:,1] = np.broadcast_to(a[None,:,None],(n,n,n))[m]
out[:,2] = np.broadcast_to(a[None,None,:],(n,n,n))[m]
return out
Combinations for higher orders would extend like-wise.
Sample runs -
In [54]: a = np.array([3,9,4,1,7])
In [55]: pairwise_combs_numba(a)
Out[55]:
array([[3, 9],
[3, 4],
[3, 1],
[3, 7],
[9, 4],
[9, 1],
[9, 7],
[4, 1],
[4, 7],
[1, 7]])
In [56]: triplet_combs_numba(a)
Out[56]:
array([[3, 9, 4],
[3, 9, 1],
[3, 9, 7],
[3, 4, 1],
[3, 4, 7],
[3, 1, 7],
[9, 4, 1],
[9, 4, 7],
[9, 1, 7],
[4, 1, 7]])
Timings (including Python's builtin - itertools.combinations
) -
In [68]: a = np.random.rand(4000)
In [69]: %timeit pairwise_combs_numba(a)
...: %timeit pairwise_combs_mask(a)
...: %timeit list(itertools.combinations(a, 2))
10 loops, best of 3: 52.2 ms per loop
10 loops, best of 3: 146 ms per loop
1 loop, best of 3: 597 ms per loop
In [70]: a = np.random.rand(400)
In [71]: %timeit triplet_combs_numba(a)
...: %timeit triplet_combs_mask(a)
...: %timeit list(itertools.combinations(a, 3))
10 loops, best of 3: 98.5 ms per loop
1 loop, best of 3: 352 ms per loop
1 loop, best of 3: 795 ms per loop